When using linear models, a common practice is to find the single best model fit used in predictions. This on the other hand can cause potential problems such as misspecification and sometimes even wrong models due to spurious regression. Another method of predicting models introduced in this study as Jackknife Model Averaging developed by Hansen & Racine (2012). This assigns weights to all possible models one could use and allows the data to have heteroscedastic errors. This model averaging estimator is compared to the Mallows’s Model Averaging (Hansen, 2007) and model selection by Bayesian Information Criterion and Mallows’s Cp. The results show that the Jackknife Model Averaging technique gives less prediction errors compared to the ...
This paper considers forecast combination in a predictive regression. We construct the point forecas...
A model averaged estimator is composed of estimators, each obtained from a different model, that are...
A model averaged estimator is composed of estimators, each obtained from a different model, that are...
When using linear models, a common practice is to find the single best model fit used in predictions...
When using linear models, a common practice is to find the single best model fit used in predictions...
In the past 20 years, model averaging has been developed as a better tool than model selection in st...
Published in Journal of Econometrics https://doi.org/10.1016/j.jeconom.2014.11.005</p
Published in Journal of Econometrics https://doi.org/10.1016/j.jeconom.2014.11.005</p
In this paper we consider the problem of frequentist model averaging for quantile regression (QR) wh...
In this paper we consider the problem of frequentist model averaging for quantile regression (QR) wh...
<p>This paper considers model averaging for the ordered probit and nested logit models, which are wi...
Procedures such as Akaike information criterion (AIC), Bayesian information criterion (BIC), minimum...
Frequentist model averaging has started to grow in popularity, and it is considered a good alternati...
Linear regression analyses commonly involve two consecutive stages of statistical inquiry. In the fi...
This paper proposes a new estimator for least squares model averaging. A model average estimator is ...
This paper considers forecast combination in a predictive regression. We construct the point forecas...
A model averaged estimator is composed of estimators, each obtained from a different model, that are...
A model averaged estimator is composed of estimators, each obtained from a different model, that are...
When using linear models, a common practice is to find the single best model fit used in predictions...
When using linear models, a common practice is to find the single best model fit used in predictions...
In the past 20 years, model averaging has been developed as a better tool than model selection in st...
Published in Journal of Econometrics https://doi.org/10.1016/j.jeconom.2014.11.005</p
Published in Journal of Econometrics https://doi.org/10.1016/j.jeconom.2014.11.005</p
In this paper we consider the problem of frequentist model averaging for quantile regression (QR) wh...
In this paper we consider the problem of frequentist model averaging for quantile regression (QR) wh...
<p>This paper considers model averaging for the ordered probit and nested logit models, which are wi...
Procedures such as Akaike information criterion (AIC), Bayesian information criterion (BIC), minimum...
Frequentist model averaging has started to grow in popularity, and it is considered a good alternati...
Linear regression analyses commonly involve two consecutive stages of statistical inquiry. In the fi...
This paper proposes a new estimator for least squares model averaging. A model average estimator is ...
This paper considers forecast combination in a predictive regression. We construct the point forecas...
A model averaged estimator is composed of estimators, each obtained from a different model, that are...
A model averaged estimator is composed of estimators, each obtained from a different model, that are...